Title
MLP Neural Network Implementation on a SIMD Architecture
Abstract
An Automatic Road Sign Recognition System {A(RS)2} is aimed at detection and recognition of one or more road signs from realworld color images. The authors have proposed an A(RS)2 able to detect and extract sign regions from real world scenes on the basis of their color and shape features. Classification is then performed on extracted candidate regions using Multi-Layer Perceptron neural networks. Although system performances are good in terms of both sign detection and classification rates, the entire process requires a large computational time, so real-time applications are not allowed. In this paper we present the implementation of the neural layer on the Georgia Institute of Technology SIMD Pixel Processor. Experimental trials supporting the feasibility of real-time processing on this platform are also reported.
Year
DOI
Venue
2002
10.1007/3-540-45808-5_10
WIRN
Keywords
Field
DocType
mlp neural network implementation,classification rate,real-time processing,automatic road sign recognition,simd architecture,realworld color image,sign region,multi-layer perceptron neural network,neural layer,road sign,real-time application,sign detection,color image,multi layer perceptron,system performance,real time processing,neural network
Pattern recognition,Computer science,Network architecture,SIMD,Digital image,Pixel,Artificial intelligence,Simd architecture,Artificial neural network,Perceptron,Color image
Conference
Volume
ISSN
ISBN
2486
0302-9743
3-540-44265-0
Citations 
PageRank 
References 
4
0.80
7
Authors
4
Name
Order
Citations
PageRank
Salvatore Vitabile144460.03
Antonio Gentile26310.63
G. B. Dammone340.80
Filippo Sorbello421829.48